In my view, cross-validation is used to compare models by using as much data as possible. For example it can be used to compare a perceptron neural network and a decision tree for the same problem. Or it can be used to study the number of neurons of a neural network for a particular problem. Here it's about comparing models/architectures.
Nevertheless, in my view, cross-validation doesn't seem suitable to find the best weights of a neural network because at each round of the cross-validation, the weights are reinitialized.
Can you confirm my point of view ? that cross-validation is only used to compare models/architectures and is not suitable to find the best parameters of these models/architectures ?